The Impact of Government Subsidies on Private R&D and Firm Performance: Does Ownership Matter in China’s Manufacturing Industry?
Abstract
:1. Introduction
2. Literature Review and Hypothesis Development
2.1. Relationship between Government Subsidies and R&D Investment
2.2. Relationship between Government Subsidies and Firm Performance
3. Research Method
3.1. Sample
3.2. Variables
3.3. Model
4. Results
4.1. Descriptive Statistics
4.2. Correlation Analysis
4.3. Estimation Results
4.4. Robustness Check
5. Additional Analyses
5.1. Analysis by Industry
5.2. Analysis by Region
5.3. Analysis by Subsidy Intensity
5.4. Analysis by R&D Intensity
6. Conclusions and Policy Implications
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Variable (Mean) | Chemical Raw Material and Chemical Products | Medicine | Special-Purpose Machinery | Electrical Machinery and Equipment | Communications and Other Electronic Equipment |
---|---|---|---|---|---|
ROA | 0.0354 | 0.0784 | 0.0303 | 0.0429 | 0.0421 |
RD | 0.0237 | 0.0324 | 0.0421 | 0.0422 | 0.0637 |
Sub | 0.0058 | 0.0061 | 0.0062 | 0.0078 | 0.0091 |
Size | 9.5007 | 9.4768 | 9.5312 | 9.4589 | 9.4396 |
Lev | 0.4192 | 0.3521 | 0.4442 | 0.4262 | 0.3810 |
Staff | 3.3166 | 3.3928 | 3.3470 | 3.3215 | 3.3947 |
Age | 1.1438 | 1.1877 | 1.1666 | 1.1724 | 1.1706 |
Own | 0.39 | 0.33 | 0.42 | 0.19 | 0.34 |
Appendix B
Variable (Mean) | Eastern Provinces | Central Provinces | Western Provinces |
---|---|---|---|
ROA | 0.0454 | 0.0336 | 0.0334 |
RD | 0.0372 | 0.0310 | 0.0272 |
Sub | 0.0065 | 0.0074 | 0.0057 |
Size | 9.4862 | 9.5553 | 9.6371 |
Lev | 0.3984 | 0.4554 | 0.4797 |
Staff | 3.3771 | 3.4716 | 3.5093 |
Age | 1.1626 | 1.1748 | 1.1858 |
Own | 0.25 | 0.52 | 0.59 |
Appendix C
Variable (Mean) | Low Subsidy Intensity | High Subsidy Intensity |
---|---|---|
ROA | 0.0408 | 0.0420 |
RD | 0.0288 | 0.0404 |
Sub | 0.0019 | 0.0113 |
Size | 9.5640 | 9.4779 |
Lev | 0.4320 | 0.4098 |
Staff | 3.4192 | 3.4089 |
Age | 1.1655 | 1.1709 |
Own | 0.38 | 0.33 |
Appendix D
Variable (Mean) | Low R&D Intensity | High R&D Intensity |
---|---|---|
ROA | 0.0373 | 0.0455 |
RD | 0.0148 | 0.0543 |
Sub | 0.0060 | 0.0072 |
Size | 9.5966 | 9.4453 |
Lev | 0.4751 | 0.3666 |
Staff | 3.4954 | 3.3326 |
Age | 1.1802 | 1.1562 |
Own | 0.42 | 0.28 |
Notes
- These data are based on China Statistical Yearbook on Science and Technology, which is provided by the National Bureau of Statistics of China.
- Ricardian equivalence provides an explanation for this crowding-out effect.
- Government subsidy aims to stimulate enterprises’ R&D activities, while enterprises’ private R&D input aims to gain core competitiveness and economic profits. Thus, government subsidy indirectly affects the quality of R&D output.
- In 2015, China’s State Council announced the establishment of a national leading group to upgrade the country’s manufacturing sector. One of the group’s main responsibilities will be to plan and coordinate the overall work to raise the country’s manufacturing power.
- In 2012, all listed companies were required by the China Securities Regulatory Commission (CSRC) to disclose detailed information about R&D expenditure in their annual financial statements.
- Market value for those firms is different from firms with only A shares.
- ROA tells you what earnings were generated from invested capital (assets). ROA for public companies can vary substantially and will be highly dependent on the industry. This is why we use ROA as a comparative measure.
- In 2016, the amount of R&D expenditure in these five industries accounted for almost half of the total R&D expenditure in the entire manufacturing industry. The amount of R&D expenditure in these five industries is 84.07 billion yuan, 48.85 billion yuan, 57.71 billion yuan, 110.24 billion yuan, and 181.10 billion yuan, respectively.
- The eastern provinces are Beijing, Tianjin, Hebei, Liaoning, Shanghai, Jiangsu, Zhejiang, Fujian, Shandong, Guangdong, and Hainan; the central provinces are Shanxi, Jilin, Heilongjiang, Anhui, Jiangxi, Henan, Hubei, and Hunan; and the western provinces are Inner Mongolia, Guangxi, Chongqing, Sichuan, Guizhou, Yunnan, Shaanxi, Gansu, Qinghai, Ningxia, Xinjiang, and Tibet.
- In 2016, the amount of R&D expenditure in eastern, central, and western provinces was 1106.2 billion yuan, 267.02 billion yuan, and 194.43 billion yuan, respectively.
- The Matthew effect, described in sociology, is a phenomenon sometimes summarized by the adage “the rich get richer and the poor get poorer.”
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Panel A: Distribution of Sample Firms by Industry | ||
Industry Sector | Number of Firms | Percent of Sample (%) |
Processing of food from agricultural products | 21 | 2.39 |
Foods | 14 | 1.59 |
Wine, drinks, and refined tea | 14 | 1.59 |
Textiles | 22 | 2.50 |
Textile wearing apparel and finery | 17 | 1.93 |
Leather, fur, feathers, and their products and footwear | 2 | 0.23 |
Processing of timber, manufacturing of wood, bamboo, rattan, palm, and straw products | 5 | 0.57 |
Furniture | 2 | 0.23 |
Paper and paper products | 18 | 2.05 |
Printing and reproduction of recorded media | 4 | 0.46 |
Culture, education, arts and crafts, sport, and entertainment goods | 6 | 0.68 |
Processing of petroleum, cooking, and nuclear fuel | 7 | 0.80 |
Chemical raw materials and chemical products | 85 | 9.67 |
Medicines | 90 | 10.24 |
Chemical fibers | 14 | 1.59 |
Rubber and plastic | 24 | 2.73 |
Nonmetallic mineral products | 27 | 3.07 |
Processing of ferrous metals | 20 | 2.28 |
Manufacturing and processing of nonferrous metals | 41 | 4.66 |
Metal products | 28 | 3.19 |
General-purpose machinery | 54 | 6.14 |
Special-purpose machinery | 62 | 7.05 |
Automotive | 54 | 6.14 |
Railroad, marine, aerospace, and other transportation equipment | 21 | 2.39 |
Electrical machinery and equipment | 93 | 10.58 |
Computer, communications, and other electronic equipment | 123 | 13.99 |
Measuring instruments | 6 | 0.68 |
Other manufacturing | 5 | 0.57 |
Total | 879 | 100 |
Panel B: Distribution of Sample Firms by Ownership | ||
Company Ownership | Number of Firms | Percent of Sample (%) |
State-owned enterprises | 310 | 35.27 |
Private-owned enterprises | 569 | 64.73 |
Total | 879 | 100 |
Variable | Definition |
---|---|
ROA | Return on assets of enterprise |
RD | Ratio of R&D expenditures to total sales |
Subt | Ratio of government subsidies to total assets in the period t |
Subt1 | Ratio of government subsidies to total assets in the first lagged period of period t |
Subt2 | Ratio of government subsidies to total assets in the second lagged period of period t |
Own | Dummy variable that takes 1 if enterprise is state-owned, 0 otherwise |
Size | Logarithm of total assets |
Lev | Ratio of total liabilities to total assets |
Staff | Logarithm of number of employees |
Age | Logarithm of years since setup of enterprise |
Panel A: Descriptive Statistics of Full Sample | ||||
Variable | Mean | Standard Deviation | Min | Max |
ROA | 0.0414 | 0.0686 | −0.7765 | 1.2162 |
RD | 0.0346 | 0.0409 | 0 | 1.6943 |
Sub | 0.0066 | 0.0102 | 0 | 0.2248 |
Size | 9.5210 | 0.4532 | 8.2854 | 11.8651 |
Lev | 0.4209 | 0.2079 | 0.0075 | 2.3940 |
Staff | 3.4140 | 0.4355 | 1.4472 | 5.2144 |
Age | 1.1682 | 0.1372 | 0.4771 | 1.7559 |
Own | 0.35 | 0.478 | 0 | 1 |
Panel B: Descriptive Statistics of SOEs and POEs | ||||
Variable (Mean) | SOEs (Own = 1) | POEs (Own = 0) | Difference t-Statistic | |
ROA | 0.0289 | 0.0482 | −9.004 | |
RD | 0.0310 | 0.0365 | −4.305 ** | |
Sub | 0.0070 | 0.0064 | 1.863 *** | |
Size | 9.7050 | 9.4207 | 20.833 *** | |
Lev | 0.5051 | 0.3751 | 20.756 *** | |
Staff | 3.5876 | 3.3194 | 20.403 *** | |
Age | 1.1885 | 1.1571 | 7.298 *** |
Variables | ROA | RD | Sub | Size | Lev | Staff | Age | Own |
---|---|---|---|---|---|---|---|---|
ROA | 1 | |||||||
RD | −0.010 | 1 | ||||||
Sub | 0.006 | 0.106 *** | 1 | |||||
Size | 0.010 | −0.112 *** | −0.073 *** | 1 | ||||
Lev | −0.409 *** | −0.177 *** | 0.019 | 0.412 *** | 1 | |||
Staff | 0.033 ** | −0.146 *** | −0.026 ** | 0.580 *** | 0.388 *** | 1 | ||
Age | −0.061 *** | −0.027 ** | 0.013 | 0.077 *** | 0.112 *** | 0.097 *** | 1 | |
Own | −0.135 *** | −0.065 *** | 0.028 ** | 0.300 *** | 0.299 *** | 0.294 *** | 0.088 *** | 1 |
Variables | Predicted Sign | Model (1) | Model (3) | Model (5) |
---|---|---|---|---|
Constant | 0.035 ** (2.111) | 0.047 * (1.794) | 0.031 * (1.915) | |
Subt | + | 0.442 *** (7.423) | 0.558 *** (6.590) | |
Subt1 | + | 0.470 *** (4.271) | ||
Subt2 | + | 0.174 * (1.780) | ||
Sub × Own | − | −0.199 * (−1.934) | ||
Size | + | 0.006 ** (2.564) | 0.006 * (1.680) | 0.006 *** (2.672) |
Lev | − | −0.030 *** (−9.363) | −0.024 *** (−4.820) | −0.030 *** (−9.182) |
Staff | + | −0.012 *** (−5.561) | −0.014 *** (−3.960) | −0.012 *** (−5.528) |
Age | − | −0.001 (−0.167) | −0.009 (−1.156) | −0.001 (−0.160) |
N | 4395 | 2637 | 4395 | |
F | 47.322 *** | 17.189 *** | 40.083 *** | |
Adj.R2 | 0.050 | 0.036 | 0.051 |
Variable | Predicted Sign | Model (2) | Model (4) | Model (6) |
---|---|---|---|---|
Constant | −0.108 *** (−4.314) | −0.174 *** (−5.188) | −0.111 *** (−4.443) | |
Subt | + | 0.186 ** (2.056) | 0.327 ** (2.532) | |
Subt1 | + | 0.061 (0.427) | ||
Subt2 | + | −0.017 (−0.138) | ||
Sub × Own | − | −0.240 (−1.529) | ||
Size | + | 0.016 *** (4.920) | 0.019 *** (4.442) | 0.017 *** (5.000) |
Lev | − | −0.168 *** (−34.145) | −0.175 *** (−26.831) | −0.167 *** (−33.920) |
Staff | + | 0.024 *** (6.949) | 0.026 *** (5.973) | 0.024 *** (6.975) |
Age | − | −0.015 ** (−2.161) | 0.007 (0.703) | −0.015 ** (−2.156) |
N | 4395 | 2637 | 4395 | |
F | 241.598 *** | 123.678 *** | 201.783 *** | |
Adj.R2 | 0.215 | 0.218 | 0.215 |
SOEs (Own = 1) | POEs (Own = 0) | |||
---|---|---|---|---|
Variable | Model (1) | Model (2) | Model (1) | Model (2) |
Constant | 0.016 (0.478) | −0.069 * (−1.661) | 0.044 *** (2.633) | −0.211 *** (−6.386) |
Sub | 0.331 *** (3.055) | 0.245 * (1.846) | 0.587 *** (9.024) | 0.128 (0.988) |
Size | 0.011 ** (2.357) | 0.012 ** (2.045) | 0.003 (1.474) | 0.027 *** (6.407) |
Lev | −0.024 *** (−3.266) | −0.169 *** (−18.738) | −0.034 *** (−11.467) | −0.160 *** (−27.296) |
Staff | −0.022 *** (−3.864) | 0.022 *** (3.168) | −0.008 *** (−4.441) | 0.025 *** (6.480) |
Age | −0.005 (−0.434) | −0.010 (−0.675) | 0.0005 (0.131) | −0.014 * (−1.860) |
N | 1550 | 1550 | 2845 | 2845 |
F | 9.391 *** | 71.560 *** | 55.893 *** | 164.071 *** |
Adj. R2 | 0.026 | 0.186 | 0.088 | 0.223 |
Chemical Raw Material and Chemical Products | Medicine | Special-Purpose Machinery | Electrical Machinery and Equipment | Communications and Other Electronic Equipment | ||||||
---|---|---|---|---|---|---|---|---|---|---|
Variable | Model (5) | Model (6) | Model (5) | Model (6) | Model (5) | Model (6) | Model (5) | Model (6) | Model (5) | Model (6) |
Constant | 0.092 *** (4.142) | −0.111 (−1.530) | 0.002 (0.061) | −0.170 * (−1.910) | −0.046 (−1.301) | −0.166 * (−1.851) | 0.077 * (1.925) | −0.094 (−1.462) | −0.143 (−1.401) | −0.189 ** (−2.399) |
Sub | −0.038 (−0.290) | 0.335 (0.775) | 0.543 *** (3.291) | 1.052 ** (2.105) | 0.276 (1.295) | 1.502 *** (2.813) | 0.640 *** (5.055) | 0.089 (0.437) | 0.923 ** (2.223) | 0.671 ** (2.088) |
Sub × Own | 0.112 (0.803) | −0.147 (−0.323) | −0.559 *** (−3.095) | −1.238 ** (−2.264) | −0.321 (−1.372) | −0.937 (−1.599) | −0.275 (−0.717) | −0.432 (−0.703) | 0.610 (1.148) | 0.515 (1.251) |
Size | −0.004 (−1.251) | 0.026 ** (2.580) | 0.007 * (1.802) | 0.029 ** (2.498) | 0.015 *** (3.034) | 0.021* (1.727) | −0.005 (−0.930) | 0.006 (0.780) | 0.041 *** (3.030) | 0.025 ** (2.351) |
Lev | −0.021 *** (−4.964) | −0.157 *** (−11.217) | −0.028 *** (−5.379) | −0.142 *** (−8.955) | −0.038 *** (−6.381) | −0.133 *** (−8.984) | −0.048 *** (−5.865) | −0.141 *** (−10.672) | −0.021 (−1.078) | −0.148 *** (−9.975) |
Staff | −0.010 *** (−3.014) | 0.016 (1.569) | −0.003 (−0.724) | 0.001 (0.105) | −0.013 ** (−2.587) | 0.036 *** (2.823) | 0.004 (0.865) | 0.038 *** (4.599) | −0.050 *** (−4.006) | 0.022 ** (2.291) |
Age | 0.008 (1.494) | −0.078 *** (−4.555) | −0.016 * (−1.792) | 0.011 (0.410) | 0.006 (0.597) | −0.063 ** (−2.509) | 0.009 (1.039) | 0.010 (0.745) | −0.013 (−0.593) | −0.025 (−1.427) |
N | 425 | 425 | 450 | 450 | 310 | 310 | 465 | 465 | 615 | 615 |
F | 19.759 *** | 28.454 *** | 9.007 *** | 17.213 *** | 9.199 *** | 19.128 *** | 13.433 *** | 22.667 *** | 5.483 *** | 22.071 *** |
Adj. R2 | 0.210 | 0.280 | 0.097 | 0.178 | 0.137 | 0.260 | 0.139 | 0.219 | 0.042 | 0.171 |
Eastern Provinces | Central Provinces | Western Provinces | ||||
---|---|---|---|---|---|---|
Variable | Model (5) | Model (6) | Model (5) | Model (6) | Model (5) | Model (6) |
Constant | 0.043 *** (2.864) | −0.148 *** (−4.709) | 0.030 (1.107) | −0.155 ** (−2.364) | −0.057 (−0.730) | −0.013 (−0.173) |
Sub | 0.683 *** (9.502) | 0.282 * (1.878) | 0.326 ** (2.405) | 0.396 (1.611) | −0.191 (−0.306) | 0.657 (1.134) |
Sub × Own | −0.226 ** (−2.440) | −0.052 (−0.269) | −0.212 (−1.425) | −0.468 * (−1.730) | 1.063 (1.501) | −0.893 (−1.357) |
Size | 0.004 * (1.795) | 0.020 *** (4.815) | 0.006 (1.540) | 0.019 *** (2.904) | 0.018* (1.673) | 0.007 (0.736) |
Lev | −0.034 *** (−11.727) | −0.182 *** (−29.860) | −0.031 *** (−6.192) | −0.155 *** (−16.959) | −0.0003 (−0.019) | −0.110 *** (−7.048) |
Staff | −0.008 *** (−3.841) | 0.026 *** (6.300) | −0.012 *** (−3.300) | 0.028 *** (4.426) | −0.034 *** (−2.778) | 0.009 (0.784) |
Age | −0.004 (−0.961) | −0.009 (−1.127) | 0.001 (0.116) | −0.053 *** (−3.560) | 0.028 (1.015) | −0.003 (−0.116) |
N | 2930 | 2930 | 835 | 835 | 630 | 630 |
F | 57.114 *** | 154.154 *** | 13.358 *** | 55.844 *** | 2.185 ** | 9.318 *** |
Adj.R2 | 0.103 | 0.239 | 0.082 | 0.283 | 0.011 | 0.074 |
Low Subsidy Intensity | High Subsidy Intensity | |||
---|---|---|---|---|
Variable | Model (5) | Model (6) | Model (5) | Model (6) |
Constant | 0.043 * (2.106) | −0.038 (−1.024) | −0.003 (−0.130) | −0.213 *** (−6.335) |
Sub | 2.538 *** (2.839) | 4.174 *** (2.926) | 0.270 *** (3.012) | 0.453 *** (3.516) |
Sub × Own | 0.048 (0.052) | −4.249 *** (−2.888) | −0.051 (−0.516) | −0.240 * (−1.682) |
Size | 0.002 (0.619) | 0.007 (1.423) | 0.014 *** (4.350) | 0.028 *** (6.217) |
Lev | −0.017 *** (−3.596) | −0.137 *** (−18.078) | −0.040 *** (−9.182) | −0.195 *** (−30.900) |
Staff | −0.010 *** (−3.211) | 0.023 *** (4.439) | −0.019 *** (−6.017) | 0.025 *** (5.507) |
Age | 0.005 (0.692) | −0.008 (−0.813) | −0.008 (−1.313) | −0.018 ** (−2.078) |
N | 2198 | 2198 | 2197 | 2197 |
F | 9.414 *** | 65.292 *** | 30.124 *** | 171.386 *** |
Adj.R2 | 0.022 | 0.149 | 0.074 | 0.318 |
Low R&D Intensity | High R&D Intensity | |||
---|---|---|---|---|
Variable | Model (5) | Model (6) | Model (5) | Model (6) |
Constant | 0.034 *** (6.646) | −0.049 (−1.389) | −0.031 (−0.941) | −0.199 *** (−5.520) |
Sub | 0.010 (0.373) | 0.037 (0.195) | 0.976 *** (6.032) | 0.800 *** (4.546) |
Sub × Own | −0.012 (−0.355) | −0.132 (−0.581) | −0.070 (−0.358) | −0.344 (−1.613) |
Size | −0.001 (−1.586) | 0.012 *** (2.660) | 0.014 *** (3.175) | 0.025 *** (5.217) |
Lev | −0.009 *** (−8.717) | −0.165 *** (−22.810) | −0.010 (−1.571) | −0.178 *** (−25.732) |
Staff | −0.001 (−1.160) | 0.021 *** (4.217) | −0.018 *** (−4.310) | 0.025 *** (5.312) |
Age | −0.001 (−0.928) | −0.021 * (−1.891) | 0.010 (1.368) | −0.012 (−1.524) |
N | 2198 | 2198 | 2197 | 2197 |
F | 22.385 *** | 92.137 *** | 13.146 *** | 117.980 *** |
Adj.R2 | 0.055 | 0.199 | 0.032 | 0.242 |
© 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
Share and Cite
Jin, Z.; Shang, Y.; Xu, J. The Impact of Government Subsidies on Private R&D and Firm Performance: Does Ownership Matter in China’s Manufacturing Industry? Sustainability 2018, 10, 2205. https://doi.org/10.3390/su10072205
Jin Z, Shang Y, Xu J. The Impact of Government Subsidies on Private R&D and Firm Performance: Does Ownership Matter in China’s Manufacturing Industry? Sustainability. 2018; 10(7):2205. https://doi.org/10.3390/su10072205
Chicago/Turabian StyleJin, Zhenji, Yue Shang, and Jian Xu. 2018. "The Impact of Government Subsidies on Private R&D and Firm Performance: Does Ownership Matter in China’s Manufacturing Industry?" Sustainability 10, no. 7: 2205. https://doi.org/10.3390/su10072205
APA StyleJin, Z., Shang, Y., & Xu, J. (2018). The Impact of Government Subsidies on Private R&D and Firm Performance: Does Ownership Matter in China’s Manufacturing Industry? Sustainability, 10(7), 2205. https://doi.org/10.3390/su10072205